基于 EEMD 和 Autoformer 多模型组合的超短期负荷预测

Yun Dong, Chongfu Yang, Qi Meng, Xuhua Ai, Yuan Yin, Kaijie Liu, Jiacheng Fu, Zhaoli Chen
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引用次数: 0

摘要

确保电网安全稳定运行在很大程度上依赖于准确高效的负荷预测。为了推进这一工作,本研究提出了一种超短期负荷预测方法,该方法融合了集合经验模式分解(EEMD)技术和自动变压器多模型方法。首先,通过选择负荷数据、历史天气数据和日期信息,建立一个全面的输入特征矩阵,并在分析前对其进行细致的预处理。随后,利用 EEMD 算法将历史负荷数据分解为不同的频率成分。每个频率成分与天气数据相结合,在一个单独的模型中进行个性化训练和预测。Autoformer 模型用于预测较低频率成分,而 XGBoost 模型则用于预测较高频率成分。在最后阶段,对每个模型的预测输出进行合并和重构,以得出最终的负载预测结果。为加快计算速度,采用了 CPU/GPU 异构协同并行计算策略,从而提高了模型的速度。所提出的方法通过特定地理区域的真实历史数据进行了验证。验证结果肯定了该模型在准确性方面优于传统模型。该模型展示了高质量的负荷预测能力,从而成为确保电网安全稳定运行的一种有前途的工具。
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Ultra-short-term load forecasting based on the combination of EEMD and Autoformer multi-model
Ensuring the secure and stable operation of the power grid heavily relies on accurate and efficient load forecasting. To advance this endeavor, this study presents an ultra-short-term load forecasting methodology that merges the Ensemble Empirical Mode Decomposition (EEMD) technique with the Autoformer multi-model approach. Firstly, a comprehensive input feature matrix is crafted by selecting load data, historical weather data, and date information, which are meticulously preprocessed before analysis. Subsequently, the EEMD algorithm is enlisted to break down historical load data into distinct frequency components. Each frequency component, combined with weather data, undergoes individualized training and prediction within a separate model. The Autoformer model is harnessed for predicting lower frequency components, while the XGBoost model is employed for higher frequency components. In the final stage, the prediction outputs from each model are amalgamated and reconstructed to yield the ultimate load prediction. To expedite computation, a CPU/GPU heterogeneous collaborative parallel computing strategy is employed, enhancing the model's speed. The proposed approach is validated through real historical data sourced from a specific geographical area. The findings affirm its superiority over traditional models in terms of accuracy. The model showcases high-quality load forecasting capabilities, thereby establishing itself as a promising tool for ensuring the secure and stable operation of power grids.
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